- Indexes >
- Compound Indexes
Compound Indexes¶
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MongoDB supports compound indexes, where a single index structure holds references to multiple fields [1] within a collection’s documents. The following diagram illustrates an example of a compound index on two fields:
[1] | MongoDB imposes a limit of 31 fields for any compound index . |
Compound indexes can support queries that match on multiple fields.
Create a Compound Index¶
To create a compound index use an operation that resembles the following prototype:
db.collection.createIndex( { <field1>: <type>, <field2>: <type2>, ... } )
The value of the field in the index specification describes the kind of
index for that field. For example, a value of 1
specifies an index
that orders items in ascending order. A value of -1
specifies an
index that orders items in descending order. For additional index
types, see index types.
Important
You may not create compound indexes that have
hashed
index type. You will receive an error if you attempt to
create a compound index that includes a hashed index
field.
Consider a collection named products
that holds documents that
resemble the following document:
{
"_id": ObjectId(...),
"item": "Banana",
"category": ["food", "produce", "grocery"],
"location": "4th Street Store",
"stock": 4,
"type": "cases"
}
The following operation creates an ascending index on the item
and
stock
fields:
db.products.createIndex( { "item": 1, "stock": 1 } )
The order of the fields listed in a compound index is important. The
index will contain references to documents sorted first by the values
of the item
field and, within each value of the item
field, sorted by
values of the stock field. See Sort Order
for more information.
In addition to supporting queries that match on all the index fields,
compound indexes can support queries that match on the prefix of the
index fields. That is, the index supports queries on the item
field
as well as both item
and stock
fields:
db.products.find( { item: "Banana" } )
db.products.find( { item: "Banana", stock: { $gt: 5 } } )
For details, see Prefixes.
Sort Order¶
Indexes store references to fields in either ascending (1
) or
descending (-1
) sort order. For single-field indexes, the sort
order of keys doesn’t matter because MongoDB can traverse the index in
either direction. However, for compound indexes, sort order can matter in determining whether
the index can support a sort operation.
Consider a collection events
that contains documents with the
fields username
and date
. Applications can issue queries that
return results sorted first by ascending username
values and then
by descending (i.e. more recent to last) date
values, such as:
db.events.find().sort( { username: 1, date: -1 } )
or queries that return results sorted first by descending username
values and then by ascending date
values, such as:
db.events.find().sort( { username: -1, date: 1 } )
The following index can support both these sort operations:
db.events.createIndex( { "username" : 1, "date" : -1 } )
However, the above index cannot support sorting by ascending
username
values and then by ascending date
values, such as the
following:
db.events.find().sort( { username: 1, date: 1 } )
For more information on sort order and compound indexes, see Use Indexes to Sort Query Results.
Prefixes¶
Index prefixes are the beginning subsets of indexed fields. For example, consider the following compound index:
{ "item": 1, "location": 1, "stock": 1 }
The index has the following index prefixes:
{ item: 1 }
{ item: 1, location: 1 }
For a compound index, MongoDB can use the index to support queries on the index prefixes. As such, MongoDB can use the index for queries on the following fields:
- the
item
field, - the
item
field and thelocation
field, - the
item
field and thelocation
field and thestock
field.
MongoDB can also use the index to support a query on item
and
stock
fields since item
field corresponds to a prefix. However,
the index would not be as efficient in supporting the query as would be
an index on only item
and stock
.
However, MongoDB cannot use the index to support queries that include
the following fields since without the item
field, none of the
listed fields correspond to a prefix index:
- the
location
field, - the
stock
field, or - the
location
andstock
fields.
If you have a collection that has both a compound index and an index on
its prefix (e.g. { a: 1, b: 1 }
and { a: 1 }
), if neither index
has a sparse or unique constraint, then you can remove the index on the
prefix (e.g. { a: 1 }
). MongoDB will use the compound index in all
of the situations that it would have used the prefix index.
Index Intersection¶
Starting in version 2.6, MongoDB can use index intersection to fulfill queries. The choice between creating compound indexes that support your queries or relying on index intersection depends on the specifics of your system. See Index Intersection and Compound Indexes for more details.
Additional Considerations¶
If your collection holds a large amount of data, and your application needs to be able to access the data while building the index, consider building the index in the background, as described in Background Construction.
To build or rebuild indexes for a replica set, see Build Indexes on Replica Sets.
Some drivers may specify indexes, using NumberLong(1)
rather than
1
as the specification. This does not have any affect on the
resulting index.